Surveilling Surveillance: Estimating the Prevalence of Surveillance Cameras with Street View Data

Hao Sheng, Keniel Yao, Sharad Goel
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引用次数: 9

Abstract

The use of video surveillance in public spaces--both by government agencies and by private citizens--has attracted considerable attention in recent years, particularly in light of rapid advances in face-recognition technology. But it has been difficult to systematically measure the prevalence and placement of cameras, hampering efforts to assess the implications of surveillance on privacy and public safety. Here we present a novel approach for estimating the spatial distribution of surveillance cameras: applying computer vision algorithms to large-scale street view image data. Specifically, we build a camera detection model and apply it to 1.6 million street view images sampled from 10 large U.S. cities and 6 other major cities around the world, with positive model detections verified by human experts. After adjusting for the estimated recall of our model, and accounting for the spatial coverage of our sampled images, we are able to estimate the density of surveillance cameras visible from the road. Across the 16 cities we consider, the estimated number of surveillance cameras per linear kilometer ranges from 0.1 (in Seattle) to 0.9 (in Seoul). In a detailed analysis of the 10 U.S. cities, we find that cameras are concentrated in commercial, industrial, and mixed zones, and in neighborhoods with higher shares of non-white residents---a pattern that persists even after adjusting for land use. These results help inform ongoing discussions on the use of surveillance technology, including its potential disparate impacts on communities of color.
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监控监控:用街景数据估计监控摄像头的普及程度
近年来,在公共场所使用视频监控——无论是政府机构还是普通公民——引起了相当大的关注,尤其是在人脸识别技术迅速发展的背景下。但系统地衡量摄像头的普及程度和位置一直很困难,这阻碍了评估监控对隐私和公共安全的影响。本文提出了一种估计监控摄像机空间分布的新方法:将计算机视觉算法应用于大规模街景图像数据。具体来说,我们建立了一个摄像头检测模型,并将其应用于从美国10个大城市和世界其他6个主要城市采样的160万张街景图像,并通过人类专家验证了积极的模型检测。在调整了我们模型的估计召回率,并考虑了采样图像的空间覆盖范围后,我们能够估计从道路上可见的监控摄像头的密度。在我们考虑的16个城市中,每线性公里的监控摄像头的估计数量从0.1(西雅图)到0.9(首尔)不等。在对美国10个城市的详细分析中,我们发现摄像头集中在商业、工业和混合区,以及非白人居民比例较高的社区——即使在调整了土地使用后,这种模式仍然存在。这些结果有助于为正在进行的关于监控技术使用的讨论提供信息,包括其对有色人种社区的潜在不同影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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